Back to Search Start Over

Applications of machine learning to a compact magnetic spectrometer for high repetition rate, laser-driven particle acceleration.

Authors :
Swanson, K. K.
Mariscal, D. A.
Djordjevic, B. Z.
Zeraouli, G.
Scott, G. G.
Hollinger, R.
Wang, S.
Song, H.
Sullivan, B.
Nedbailo, R.
Rocca, J. J.
Ma, T.
Source :
Review of Scientific Instruments. 10/1/2022, Vol. 93 Issue 10, p1-5. 5p.
Publication Year :
2022

Abstract

Accurately and rapidly diagnosing laser–plasma interactions is often difficult due to the time-intensive nature of the analysis and will only become more so with the rise of high repetition rate lasers and the desire to implement feedback on a commensurate timescale. Diagnostic analysis employing machine learning techniques can help address this problem while maintaining a high degree of accuracy. We report on the application of machine learning to the analysis of a scintillator-based electron spectrometer for experiments on high intensity, laser–plasma interactions at the Colorado State University Advanced Lasers and Extreme Photonics facility. Our approach utilizes a neural network trained on synthetic data and tested on experiments to extract the accelerated electron temperature. By leveraging transfer learning, we demonstrate an improvement in the neural network accuracy, decreasing the network error by 50%. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00346748
Volume :
93
Issue :
10
Database :
Academic Search Index
Journal :
Review of Scientific Instruments
Publication Type :
Academic Journal
Accession number :
159976874
Full Text :
https://doi.org/10.1063/5.0101857